Generative AI for Retail CRM Systems: Revolutionizing Customer Engagement and Satisfaction Through Data-Driven Personalization

Generative AI for Retail CRM Systems: Revolutionizing Customer Engagement and Satisfaction Through Data-Driven Personalization

Authors

  • Yeswanth Surampudi Beyond Finance, USA
  • Anil Kumar Ratnala Albertsons Companies Inc, USA
  • Bhavani Krothapalli Google, USA

Downloads

Keywords:

generative AI, retail CRM

Abstract

Generative AI has rapidly emerged as a transformative tool across numerous industries, with its application in retail Customer Relationship Management (CRM) systems holding significant potential to redefine customer engagement and satisfaction. This paper explores the capacity of generative AI to revolutionize CRM strategies within the retail sector, focusing on the enhancement of data-driven personalization and interaction optimization to elevate the quality of customer experiences. By leveraging vast volumes of customer data, generative AI models are uniquely capable of synthesizing new, meaningful insights into consumer preferences, behaviors, and purchasing patterns, facilitating a level of customization that traditional CRM systems cannot achieve. This study delves into the technical capabilities of generative AI, particularly in employing models such as Generative Adversarial Networks (GANs), Variational Autoencoders (VAEs), and transformer-based models to generate predictive insights and personalized content that respond dynamically to individual consumer profiles.

Central to this discussion is the examination of how generative AI can augment existing retail CRM functions, transitioning them from reactive to highly proactive systems that anticipate and fulfill customer needs. Traditional CRM systems largely rely on historical data and rule-based algorithms, often resulting in generalized marketing efforts that fail to resonate with specific consumer segments. In contrast, generative AI algorithms enable a more sophisticated approach, utilizing real-time data inputs and advanced machine learning techniques to produce hyper-personalized recommendations, dynamic content generation, and customer-specific engagement strategies. For instance, generative AI can simulate and predict customer responses to various promotional offers, enabling retailers to tailor communications based on individual preferences, thereby fostering increased engagement and brand loyalty. Furthermore, this study investigates the role of generative AI in refining sentiment analysis, enabling CRM systems to detect nuanced shifts in customer sentiment across digital interactions, which allows for timely, relevant responses that enhance overall customer satisfaction.

A key focus of this paper is the integration of generative AI within the broader CRM ecosystem and its impact on operational efficiency and strategic decision-making. By automating complex customer segmentation processes and facilitating the creation of synthetic yet realistic customer profiles, generative AI enhances CRM systems’ predictive power and enables more agile marketing responses. This capability is particularly valuable in the context of omni-channel retail environments, where the capacity to maintain a cohesive and personalized customer experience across multiple platforms is essential for competitive differentiation. Additionally, the paper addresses the technical requirements and challenges associated with deploying generative AI in retail CRM systems, including considerations of data quality, ethical implications of personalized targeting, and the need for scalable computational resources. The ethical dimensions of generative AI usage in CRM are critical; therefore, this paper examines concerns related to data privacy, transparency in AI-driven interactions, and the potential for biased algorithmic outcomes, proposing guidelines for responsible AI deployment that align with consumer trust and regulatory standards.

To further substantiate the theoretical insights presented, this research includes case studies and quantitative analyses demonstrating the practical effectiveness of generative AI in retail CRM settings. Examples from leading retail brands illustrate how generative AI-based CRM strategies have successfully driven measurable improvements in customer retention rates, engagement metrics, and sales conversions. Moreover, predictive models embedded within these systems enable retailers to forecast future purchasing behaviors and segment customers with unprecedented precision. As generative AI continues to evolve, it is anticipated that its applications within CRM will extend to even more advanced forms of virtual customer assistance, voice-based AI interactions, and real-time personalized content generation during in-store or online shopping experiences, thereby bridging the gap between digital and physical retail interactions. The paper concludes by highlighting future research directions, emphasizing the potential of generative AI to drive innovations in retail CRM that prioritize customer-centric strategies while balancing operational objectives and ethical considerations.

Through this comprehensive analysis, this study aims to provide an in-depth understanding of how generative AI technologies can be harnessed to revolutionize CRM strategies in the retail sector. By examining both the technical underpinnings and practical applications of generative AI in enhancing data-driven personalization, this research underscores the strategic value of adopting advanced AI models for retailers aiming to stay competitive in a data-intensive market landscape. Ultimately, generative AI is positioned as a transformative enabler, empowering retail CRM systems to not only meet but exceed modern customer expectations through unprecedented levels of engagement and satisfaction.

Downloads

Download data is not yet available.

References

A. Radford, L. Metz, and S. Chintala, "Unsupervised representation learning with deep convolutional generative adversarial networks," arXiv preprint arXiv:1511.06434, 2015.

I. Goodfellow, J. Pouget-Abadie, M. Mirza, B. Xu, D. Warde-Farley, S. Ozair, A. Courville, and Y. Bengio, "Generative adversarial nets," Advances in Neural Information Processing Systems, vol. 27, 2014.

Ratnala, Anil Kumar, Rama Krishna Inampudi, and Thirunavukkarasu Pichaimani. "Evaluating Time Complexity in Distributed Big Data Systems: A Case Study on the Performance of Hadoop and Apache Spark in Large-Scale Data Processing." Journal of Artificial Intelligence Research and Applications 4.1 (2024): 732-773.

Sangaraju, Varun Varma, and Kathleen Hargiss. "Zero trust security and multifactor authentication in fog computing environment." Available at SSRN 4472055.

Machireddy, Jeshwanth Reddy. "ARTIFICIAL INTELLIGENCE-BASED APPROACH TO PERFORM MONITORING AND DIAGNOSTIC PROCESS FOR A HOLISTIC ENVIRONMENT." International Journal of Computer Science and Engineering Research and Development (IJCSERD) 14.2 (2024): 71-88.

Tamanampudi, Venkata Mohit. "AI-Driven Incident Management in DevOps: Leveraging Deep Learning Models and Autonomous Agents for Real-Time Anomaly Detection and Mitigation." Hong Kong Journal of AI and Medicine 4.1 (2024): 339-381.

S. Kumari, “Cloud Transformation and Cybersecurity: Using AI for Securing Data Migration and Optimizing Cloud Operations in Agile Environments”, J. Sci. Tech., vol. 1, no. 1, pp. 791–808, Oct. 2020.

Kurkute, Mahadu Vinayak, Anil Kumar Ratnala, and Thirunavukkarasu Pichaimani. "AI-Powered IT Service Management for Predictive Maintenance in Manufacturing: Leveraging Machine Learning to Optimize Service Request Management and Minimize Downtime." Journal of Artificial Intelligence Research 3.2 (2023): 212-252.

Pichaimani, T., Inampudi, R. K., & Ratnala, A. K. (2021). Generative AI for Optimizing Enterprise Search: Leveraging Deep Learning Models to Automate Knowledge Discovery and Employee Onboarding Processes. Journal of Artificial Intelligence Research, 1(2), 109-148.

Surampudi, Yeswanth, Dharmeesh Kondaveeti, and Thirunavukkarasu Pichaimani. "A Comparative Study of Time Complexity in Big Data Engineering: Evaluating Efficiency of Sorting and Searching Algorithms in Large-Scale Data Systems." Journal of Science & Technology 4.4 (2023): 127-165.

Kondaveeti, Dharmeesh, Rama Krishna Inampudi, and Mahadu Vinayak Kurkute. "Time Complexity Analysis of Graph Algorithms in Big Data: Evaluating the Performance of PageRank and Shortest Path Algorithms for Large-Scale Networks." Journal of Science & Technology 5.4 (2024): 159-204.

Tamanampudi, Venkata Mohit. "Generative AI Agents for Automated Infrastructure Management in DevOps: Reducing Downtime and Enhancing Resource Efficiency in Cloud-Based Applications." Journal of AI-Assisted Scientific Discovery 4.1 (2024): 488-532.

Inampudi, Rama Krishna, Thirunavukkarasu Pichaimani, and Yeswanth Surampudi. "AI-Enhanced Fraud Detection in Real-Time Payment Systems: Leveraging Machine Learning and Anomaly Detection to Secure Digital Transactions." Australian Journal of Machine Learning Research & Applications 2.1 (2022): 483-523.

Sangaraju, Varun Varma, and Senthilkumar Rajagopal. "Applications of Computational Models in OCD." In Nutrition and Obsessive-Compulsive Disorder, pp. 26-35. CRC Press.

S. Kumari, “Cybersecurity Risk Mitigation in Agile Digital Transformation: Leveraging AI for Real-Time Vulnerability Scanning and Incident Response ”, Adv. in Deep Learning Techniques, vol. 3, no. 2, pp. 50–74, Dec. 2023

Parida, Priya Ranjan, Rama Krishna Inampudi, and Anil Kumar Ratnala. "AI-Driven ITSM for Enhancing Content Delivery in the Entertainment Industry: A Machine Learning Approach to Predict and Automate Service Requests." Journal of Artificial Intelligence Research and Applications 3.1 (2023): 759-799.

D. P. Kingma and M. Welling, "Auto-Encoding Variational Bayes," Proceedings of the 2nd International Conference on Learning Representations (ICLR), 2014.

J. Brownlee, "Generative Adversarial Networks (GANs): A Survey," Machine Learning Mastery, 2020. [Online]. Available: https://machinelearningmastery.com/generative-adversarial-networks/

M. D. Zeiler, "Adadelta: An adaptive learning rate method," arXiv preprint arXiv:1212.5701, 2012.

S. Ruder, "An overview of gradient descent optimization algorithms," arXiv preprint arXiv:1609.04747, 2016.

R. K. Gupta and S. Ghosh, "Generative AI for customer relationship management in retail: A review," International Journal of Retail & Distribution Management, vol. 49, no. 10, pp. 1205–1221, 2021.

D. C. H. Ng, "AI-powered personalization in retail: A review of applications and challenges," AI Open, vol. 1, pp. 87–102, 2020.

J. McCormick, "AI and the Future of Retail: Opportunities for Personalization," Journal of Retailing and Consumer Services, vol. 59, pp. 102413, 2021.

S. S. M. Ho and M. K. T. Lee, "Personalized customer service: The use of AI in CRM systems," Journal of Service Research, vol. 23, no. 4, pp. 423–440, 2020.

K. S. R. Anwar and M. M. Gohar, "Machine learning in CRM: Transforming customer engagement," International Journal of Computer Applications, vol. 181, no. 7, pp. 15–22, 2020.

A. A. Farhat, N. Shah, and M. I. Khan, "AI in retail: Personalizing the customer journey," International Journal of Information Technology, vol. 11, pp. 311-318, 2020.

Y. Liu, J. Yu, and X. Li, "Sentiment analysis and its applications in CRM systems," International Journal of Data Science and Analytics, vol. 6, pp. 205–213, 2020.

R. S. Raman, "Generative AI in retail: A new frontier in customer experience management," Journal of Business Research, vol. 102, pp. 51–62, 2020.

T. N. H. Nguyen, K. M. Y. Tan, and J. A. John, "Optimizing marketing campaigns using predictive analytics," Marketing Science, vol. 38, pp. 1003–1024, 2020.

A. M. Finkelstein and K. H. Lee, "AI and its applications in customer relationship management," Journal of Retail Marketing, vol. 23, no. 5, pp. 62–74, 2021.

J. Wilson and M. Smith, "The ethical challenges of AI in CRM systems," AI and Ethics, vol. 1, pp. 23–36, 2021.

M. K. Johnson, "Building trust in AI-based CRM systems," Journal of Business Ethics, vol. 151, pp. 531–543, 2020.

S. M. Williams and J. S. Thompson, "Leveraging AI in customer engagement: A case study of successful implementations," International Journal of Marketing Research, vol. 37, pp. 125–139, 2020.

J. N. Rajendran, A. Kumar, and R. S. Datta, "Future trends in AI and its impact on customer engagement in retail," Journal of Retail Technology, vol. 8, no. 1, pp. 14–22, 2021.

Downloads

Published

09-07-2024

How to Cite

Yeswanth Surampudi, Anil Kumar Ratnala, and Bhavani Krothapalli. “Generative AI for Retail CRM Systems: Revolutionizing Customer Engagement and Satisfaction Through Data-Driven Personalization”. Journal of Science & Technology, vol. 5, no. 4, July 2024, pp. 205-46, https://thesciencebrigade.com/jst/article/view/504.
PlumX Metrics

Plaudit

License Terms

Ownership and Licensing:

Authors of this research paper submitted to the Journal of Science & Technology retain the copyright of their work while granting the journal certain rights. Authors maintain ownership of the copyright and have granted the journal a right of first publication. Simultaneously, authors agreed to license their research papers under the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International (CC BY-NC-SA 4.0) License.

License Permissions:

Under the CC BY-NC-SA 4.0 License, others are permitted to share and adapt the work, as long as proper attribution is given to the authors and acknowledgement is made of the initial publication in the Journal of Science & Technology. This license allows for the broad dissemination and utilization of research papers.

Additional Distribution Arrangements:

Authors are free to enter into separate contractual arrangements for the non-exclusive distribution of the journal's published version of the work. This may include posting the work to institutional repositories, publishing it in journals or books, or other forms of dissemination. In such cases, authors are requested to acknowledge the initial publication of the work in the Journal of Science & Technology.

Online Posting:

Authors are encouraged to share their work online, including in institutional repositories, disciplinary repositories, or on their personal websites. This permission applies both prior to and during the submission process to the Journal of Science & Technology. Online sharing enhances the visibility and accessibility of the research papers.

Responsibility and Liability:

Authors are responsible for ensuring that their research papers do not infringe upon the copyright, privacy, or other rights of any third party. The Journal of Science & Technology and The Science Brigade Publishers disclaim any liability or responsibility for any copyright infringement or violation of third-party rights in the research papers.

Loading...